On the Importance of 3D Surface Information for Remote Sensing Classification Tasks
Jan Petrich, Ryan Sander, Eliza Bradley, Adam Dawood, Shawn Hough

TL;DR
This study evaluates the impact of adding 3D surface information to remote sensing classification tasks, finding it enhances out-of-sample accuracy especially with limited training data, despite minimal in-sample gains.
Contribution
It provides a comparative analysis of 3D surface data's value in remote sensing classification, highlighting its importance for out-of-sample performance and training-scarce scenarios.
Findings
3D nDSM improves out-of-sample accuracy significantly.
Spectral info alone suffices for in-sample classification.
nDSM is crucial when training data is scarce.
Abstract
There has been a surge in remote sensing machine learning applications that operate on data from active or passive sensors as well as multi-sensor combinations (Ma et al. (2019)). Despite this surge, however, there has been relatively little study on the comparative value of 3D surface information for machine learning classification tasks. Adding 3D surface information to RGB imagery can provide crucial geometric information for semantic classes such as buildings, and can thus improve out-of-sample predictive performance. In this paper, we examine in-sample and out-of-sample classification performance of Fully Convolutional Neural Networks (FCNNs) and Support Vector Machines (SVMs) trained with and without 3D normalized digital surface model (nDSM) information. We assess classification performance using multispectral imagery from the International Society for Photogrammetry and Remote…
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